Rollover accidents have a higher fatality rate than
other types of accidents. Therefore, rollover prevention systems
are of great importance for driver safety. The implementation of
rollover prevention systems requires an estimation of the rollover
risk. To assess that risk, different rollover indices have been
introduced. A difficulty is the dependence of these indices on
unknown parameters, e.g., center of gravity and current load
of the vehicle. One solution is to implement an algorithm for
the estimation of the required parameters [1]. In this work
however, we investigate the use of recurrent neural networks
for the estimation of the rollover index. Their ability to work on
sequential data is promising for a data based estimation without
the need of an additional estimation algorithm. We implement
and test different recurrent neural network architectures and
compare the results with the achievable performance of a static
neural network. The results are validated in simulation in the
industry standard software CarSim.
«
Rollover accidents have a higher fatality rate than
other types of accidents. Therefore, rollover prevention systems
are of great importance for driver safety. The implementation of
rollover prevention systems requires an estimation of the rollover
risk. To assess that risk, different rollover indices have been
introduced. A difficulty is the dependence of these indices on
unknown parameters, e.g., center of gravity and current load
of the vehicle. One solution is to implement an algorith...
»